Support for OpenCL-based processing blocks
-
Updated
Nov 20, 2020 - C++
Support for OpenCL-based processing blocks
Dependency Analysis is performed on some code snippets and they have been improved in speed if possible
This is my team's project for CSE-371: Parallel Computing taught at IIT (BHU) Varanasi.
Locally Sensitive Data Mule Scheduling Problem (W.I.P.)
C++ class for signal processing, async network programming, concurrency, parallel computing and multithreading
ThreadPoolManager is a C++ project that implements an efficient multi-threading system using a thread pool for generic functions of the same type and different tasks. It includes task management, synchronization mechanisms, and thread-safe logging to demonstrate concurrent task execution.
KMeans With OMP Parallelization
Academic Lab Course of the 27th batch of Computer Science & Engineering | University of Rajshahi - 🇧🇩
Projeto desenvolvido para disciplina de sistemas paralelos e distribuídos(SPD) utilizando conjunto de Mandelbrot para criar fractais utilizando processamento distribuído.
C++ class for signal processing, async network programming, concurrency, parallel computing and multithreading
An OpenMP C port of pixelmatch, the smallest, simplest and fastest JavaScript pixel-level image comparison library.
Parallelization of Gradient Descent on Feedforward Neural Networks
Code for Distributed Systems course assignments
A GPU accelerated program to search the minecraft world for the largest connected clump of layer 5 bedrock
C++ class for signal processing, async network programming, concurrency, parallel computing and multithreading
The key objective of parallel processing is to reduce the computational time of a program involving very large input data. Our idea is to explore current multi-core commercial processors in order to speed up image segmentation process. In this paper, a multi-core parallel implementation of the Mean Shift algorithm is presented that aims at provi…
C++ OpenMP and CUDA implementation of parallel ensembling of global stiffness matrix.
Add a description, image, and links to the parallel-processing topic page so that developers can more easily learn about it.
To associate your repository with the parallel-processing topic, visit your repo's landing page and select "manage topics."